Scholars who want to research a scientific topic must take time to read, extract meaning, and identify connections across many papers. As scientific literature grows, this becomes increasingly challenging. Meanwhile, authors summarize prior research in papers' related work sections, though this is scoped to support a single paper. A formative study found that while reading multiple related work paragraphs helps overview a topic, it is hard to navigate overlapping and diverging references and research foci. In this work, we design a system, Relatedly, that scaffolds exploring and reading multiple related work paragraphs on a topic, with features including dynamic re-ranking and highlighting to spotlight unexplored dissimilar information, auto-generated descriptive paragraph headings, and low-lighting of redundant information. From a within-subjects user study (n=15), we found that scholars generate more coherent, insightful, and comprehensive topic outlines using Relatedly compared to a baseline paper list.
翻译:想要研究科学课题的学者们必须花时间来阅读、提取含义和辨识许多论文之间的联系。 随着科学文献的增长,这变得越来越具有挑战性。与此同时,作者们在论文的相关工作章节中总结了先前的研究,尽管这范围很广,可以支持一份单一的论文。一项成型研究发现,阅读多个相关工作段落有助于概述一个专题,但很难浏览重叠和差异的参考和研究角度。在这项工作中,我们设计了一个系统,与此相关,使脚手们探索和阅读关于一个专题的多个相关工作段落,其特征包括动态重排和突出突出未探索的不同信息、自动生成的描述段落标题和冗余信息的低亮度。我们从一个主题内用户研究(n=15)中发现,学者们利用与基线文件清单相比,产生了更加连贯、有洞察力和全面的专题大纲。